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Case Study: Cameraphones

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Case Study: Cameraphones IS146: Foundations of New Media Prof. Marc Davis, Prof. Peter Lyman, and danah boyd UC Berkeley SIMS Tuesday and Thursday 2:00 pm 3:30 pm – PowerPoint PPT presentation

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Title: Case Study: Cameraphones


1
Case Study Cameraphones
IS146 Foundations of New Media
  • Prof. Marc Davis, Prof. Peter Lyman, and danah
    boyd
  • UC Berkeley SIMS
  • Tuesday and Thursday 200 pm 330 pm
  • Spring 2005
  • http//www.sims.berkeley.edu/academics/courses/is1
    46/s05/

2
Lecture Overview
  • Review of Last Time
  • Understanding Visual Media
  • Today
  • Case Study Cameraphone
  • Preview of Next Time
  • Databases

3
Lecture Overview
  • Review of Last Time
  • Understanding Visual Media
  • Today
  • Case Study Cameraphone
  • Preview of Next Time
  • Databases

4
What Are Comics?
  • Juxtaposed pictorial and other images in
    deliberate sequence, intended to convey
    information and/or to produce an aesthetic
    response in the viewer. (p. 9)
  • How do comics differ from
  • Photographs?
  • Movies?
  • Hieroglyphics?
  • Emoticons?

5
Old Comics Mayan Codex Nuttall
6
Scott McClouds Big Triangle
Picture Plane
Reality
Language
McCloud found that The Big Triangle as it came
to be known, was an interesting tool for thinking
about comics art...
7
Cartoons and Viewer Identification
8
Closure From Parts To The Whole
9
Closure Bridging Time and Space
10
Closure in Comics
11
Types of Closure
  • Scene-To-Scene
  • Aspect-To-Aspect
  • Non-Sequitur
  • Moment-To-Moment
  • Action-To-Action
  • Subject-To-Subject

12
Questions for Today
  • How do we interpret images and sequences of
    images?
  • How do we read different visual representations
    of the world (especially different levels of
    realism and abstraction) differently?
  • How does what is left out affect how we
    understand images and sequences of images?

13
Questions for Today
  • What are some of the differences between how text
    and images function in comics?
  • What would be lost/gained in moving between
    images and text?

14
Questions for Today
  • How could we represent images and sequences of
    images in order to make them programmable?
  • What could computation do to affect how we
    produce, manipulate, reuse, and understand images
    and sequences of images?

15
Lecture Overview
  • Review of Last Time
  • Understanding Visual Media
  • Today
  • Case Study Cameraphone
  • Preview of Next Time
  • Databases

16
What is the Problem?
  • Today people cannot easily find, edit, share, and
    reuse digital visual media
  • Computers dont understand visual media content
  • Digital visual media are opaque and data rich
  • We lack structured representations
  • Without metadata, manipulating digital visual
    media will remain like word-processing with
    bitmaps

17
Signal-to-Symbol Problems
  • Semantic Gap
  • Gap between low-level signal analysis and
    high-level semantic descriptions
  • Vertical off-white rectangular blob on blue
    background does not equal Campanile at UC
    Berkeley

18
Signal-to-Symbol Problems
  • Sensory Gap
  • Gap between how an object appears and what it is
  • Different images of same object can appear
    dissimilar
  • Images of different objects can appear similar

19
Computer Vision and Context
  • You go out drinking with your friends
  • You get drunk
  • Really drunk
  • You get hit over the head and pass out
  • You are flown to a city in a country youve never
    been to with a language you dont understand and
    an alphabet you cant read
  • You wake up face down in a gutter with a terrible
    hangover
  • You have no idea where you are or how you got
    there
  • This is what its like to be most computer vision
    systemsthey have no context
  • Context is what enables us to understand what we
    see

20
How We Got Here Disabling Assumptions
  • Contextual (spatial, temporal, social, etc.)
    metadata about the capture and use of media are
    not available
  • Therefore all analysis of media content must be
    focused on the media signal alone
  • Media capture and media analysis are separated in
    time and space
  • Therefore removed from their context of creation
    and the users who created them
  • Multimedia content analysis must not involve
    humans
  • Therefore missing out on the possibility of
    human-in-the-loop approaches to algorithm
    design and network effects of the activities of
    groups of users

21
Where To Go Enabling Assumptions
  1. Leverage contextual, sensory-rich metadata
    (spatial, temporal, social, etc.) about the
    capture and use of media content
  2. Integrate media capture and analysis at the point
    of capture and throughout the media lifecycle
  3. Design systems that incorporate human beings as
    interactive functional components and aggregate
    and analyze user behavior

22
Traditional Media Production Chain
METADATA
Metadata-Centric Production Chain
PRE-PRODUCTION
POST-PRODUCTION
PRODUCTION
DISTRIBUTION
23
Moores Law for Cameras
2000
2002
400
Kodak DX4900
Kodak DC40
40
SiPix StyleCam Blink
Nintendo GameBoy Camera
24
CaptureProcessingInteractionNetwork
25
Camera Phones as Platform
  • Media capture (images, video, audio)
  • Programmable processing using open standard
    operating systems, programming languages, and
    APIs
  • Wireless networking
  • Personal information management functions
  • Rich user interaction modalities
  • Time, location, and user contextual metadata

26
Camera Phones as Platform
  • In the first half of 2003, more camera phones
    were sold worldwide than digital cameras
  • By 2008, the average camera phone is predicted to
    have 5 megapixel resolution
  • Last month Samsung introduced 7 megapixel camera
    phones with optical zoom and photo flash
  • There are more cell phone users in China than
    people in the United States (300 million)
  • For 90 of the world their computer is their
    cell phone

27
Campanile Inspiration
28
Mobile Media Metadata Idea
  • Leverage the spatio-temporal context and social
    community of media capture in mobile devices
  • Gather all automatically available information at
    the point of capture (time, spatial location,
    phone user, etc.)
  • Use metadata similarity and media analysis
    algorithms to find similar media that has been
    annotated before
  • Take advantage of this previously annotated media
    to make educated guesses about the content of the
    newly captured media
  • Interact in a simple and intuitive way with the
    phone user to confirm and augment system-supplied
    metadata for captured media

29
Campanile Scenario
30
From Context to Content
  • Context
  • When
  • Date and time
  • Where
  • CellID refined to semantic place
  • Who
  • Cellphone user
  • What
  • Activity as product of when, where, and who
  • Content
  • When was the photo taken?
  • Where is the subject of the photo?
  • Who is in the photo?
  • What are the people doing?
  • What objects are in the photo?

31
Space Time Social Space
SPATIAL
TEMPORAL
SOCIAL
32
What is Location?
33
Camera Location vs. Subject Location
  • Camera Location Golden Gate Bridge
  • Subject Location Golden Gate Bridge
  • Camera Location Albany Marina
  • Subject Location Golden Gate Bridge

34
Kodak Picture Spot
35
Location Guesser
  • Weighted sum of features
  • Most recently visited location
  • Most visited location by me in this CellID
    around this time
  • Most visited location by me in this CellID
  • Most visited location by others in this
    CellID around this time
  • Most visited location by others in this CellID

36
Location Guesser Performance
  • Exempting the occasions on which a user first
    enters a new location into the system, MMM
    guessed the correct location of the subject of
    the photo (out of an average of 36.8 possible
    locations)
  • 100 of the time within the first four guesses
  • 96 of the time within the first three guesses
  • 88 of the time within the first two guesses
  • 69 of the time as the first guess

37
MMM1 Context to Content
  • When
  • Network Time Server
  • Where
  • CellID
  • Who
  • Cellphone ID
  • What
  • Faceted Annotation

Context
Content
38
From MMM-1 To MMM-2
  • MMM-1 asked
  • What did I just take a picture of?
  • MMM-2 adds
  • Whom do I want to share this picture with?

Content
Community
Context
Community
39
Sharing ? Metadata
  • From contextual metadata to sharing
  • A parent takes a photo of his child on the
    childs birthday
  • Whom does he share it with?
  • From sharing to content metadata
  • A birdwatcher takes a photo in a bird sanctuary
    and sends it to her birdwatching group
  • What is the photo of?

40
MMM2 Context to Sharing
  • When
  • Network Time Server
  • Where
  • CellID
  • GPS
  • Bluetooth
  • Who
  • Cellphone ID
  • Bluetooth
  • Sharing History
  • What
  • Faceted Annotation
  • Captions

Context
Community
41
MMM2 Context to Sharing
42
MMM2 Interfaces Phone






43
MMM2 Interfaces Web
44
MMM2 Image Map
45
More Captures and Uploads
 STATS MMM1 MMM2 DIFF
Users 38 40 5
Days 63 39 -38
Raw totals      
Personal photos uploaded 155 1478 854
Total photos uploaded 535 1678 214
Photos not uploaded 108 52 -52
Average per user per day      
Personal photos uploaded 0.06 0.95 1363
Total photos uploaded 0.22 1.08 381
Photos not uploaded 0.05 0.03 -26
Upload failure rate 16.8 3.0 -82
46
Reasons For 13.6 Times Increase
  • Better image quality
  • VGA vs. 1 megapixel image resolution
  • Night mode for low light
  • Digital zoom
  • Familiarity of the user population with
    cameraphones
  • 12 prior cameraphone users this year vs. 1 last
    year
  • The availability of only 1 rather than 2 camera
    applications in MMM2 vs. MMM1
  • Automatic background upload of photos to the web
    photo management application
  • Automatic support for sharing on the cameraphone
    and on the web

47
More Sharing With Suggestions
48
More Sharing With Suggestions
MMM2 USER BEHAVIOR BEFORE SHARE GUESSER AFTER SHARE GUESSER DIFF
TOTAL PHOTOS UPLOADED 688 990 144
TOTAL PERSONAL PHOTOS UPLOADED 688 790 115
TOTAL PHOTOS SHARED 249 791 318
TOTAL PERSONAL PHOTOS SHARED 249 591 237
PERCENTAGE OF PHOTOS SHARED 36 80 221
PERCENTAGE OF PERSONAL PHOTOS SHARED 36 75 207
49
Sharing Graph
50
Scaling Up Photo Sharing
100K
100M
51
MMM3 Context Content Sharing
  • When
  • Network Time Server
  • Calendar Events
  • Where
  • CellID
  • GPS
  • Bluetooth
  • Who
  • Cellphone ID
  • Bluetooth
  • Sharing History
  • What
  • Faceted Annotations
  • Captions
  • Weather Service
  • Image Analysis

Content
Context
Community
52
MMM3 Research Questions
Content
Community
Context
  • MMM1
  • Context ? Content
  • MMM2
  • Context ? Community
  • MMM3
  • Community ? Context
  • Community ? Content
  • Content ? Context
  • Content ? Community

53
Social Uses of Personal Photos
  • Looking not just at what people do with digital
    imaging technology, but why they do it
  • Goals
  • Identify social uses of photography to predict
    resistances and affordances of next generation
    mobile media devices and applications
  • Methods
  • Situated video interviews
  • Review of online photo sites
  • Sociotechnological prototyping (magic thing,
    technology probes)

54
From What to Why to What
55
Preliminary Findings
  • Social uses of personal photos
  • Creating and maintaining social relationships
  • Constructing personal and group memory
  • Self-presentation
  • Self-expression
  • Functional self and others
  • Media and resistance
  • Materiality
  • Orality
  • Storytelling

56
Photo Examples of Social Uses
57
Summary
  • Cameraphones are a paradigm-changing device for
    multimedia computing
  • Context-aware mobile media metadata will solve
    many problems in media asset management
  • MMM1
  • Content can be inferred from context
  • MMM2
  • Sharing can be inferred from context

58
Alex Jaffe on Cameraphone Uses
  • Many of the users of cell phone cameras in this
    paper felt compelled to chronicle very "normal"
    aspects of their daily life, either to share with
    others or for personal memories. Do you think the
    ability to constantly record one's life satisfies
    an existing desire, or is the technology
    fulfilling a need it itself inspires in people?
    Regardless, can you think of examples where
    technology is used to do something not because
    there is a need, but simply because it becomes
    possible?

59
Alex Jaffe on Cameraphone Uses
  • Respondents indicated that one of their favorite
    features unique to MMM(2) was their ability to
    send pictures to people immediately after they
    were taken. This created a sense of immediacy and
    "being there" in the viewer. How is communicating
    in this way reminiscent of orality, albeit in
    visual form? Might this be an important part of
    secondary orality in times to come?

60
Magen Farrar on Context-To-Content
  • Context-to-content inferencing promises to
    solve the problems of the sensory and semantic
    gaps in multimedia information systems...By using
    the spatio-temporal-social context of image
    capture, we are able to infer that different
    images taken in the vicinity of the Campanile are
    very likely of the Campanile at UC Berkeley and
    know that they are not of, for example, the
    Washington Monument...  So, how is the system of
    context to content inferencing changing to
    allow deciphering, or specifics, between similar
    content within the same context?

61
Magen Farrar on Context-To-Content
  • Sharing metadata is exceptionally useful in
    inferring media content from context, but can
    potentially violate one's privacy.  Other than
    the opt-in/opt-out mechanisms in the system, what
    other steps are being thought of to assure the
    preservation of privacy while sharing information
    in the Mobile Media Metadata system?

62
Lecture Overview
  • Review of Last Time
  • Understanding Visual Media
  • Today
  • Case Study Cameraphone
  • Preview of Next Time
  • Databases

63
Readings for Next Week
  • Tuesday (Guest Lecture by Dr. Frank Nack)
  • Lev Manovich. Database as a Symbolic Form. 1999,
    p. 1-16. http//www.manovich.net/DOCS/database.rtf
  • Discussion Questions
  • Dorian Peters
  • Joshia Chang
  • Thursday (Guest Lecture by Prof. Yehuda Kalay)
  • Steve Harrison and Paul Dourish. Re-Place-ing
    Space The Roles of Place and Space in
    Collaborative Systems. in Proceedings of ACM
    Conference on CSCW. New York ACM Press, 1996, p.
    67-76.
  • Discussion Questions
  • Vlad Kaplun
  • Annie Chiu
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